Fuzzy Cluster Analysis and Prediction of Psychiatric Health Data Based on BPNN

H. Xiang, Anrong Wang, Guoqun Fu, Xue Luo, Xudong Pan
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Abstract

PMH (psychiatry/mental health) is affected by many factors, among which there are numerous connections, so the prediction of PMH is a nonlinear problem. In this paper, BPNN (Back Propagation Neural Network) is applied to fuzzy clustering analysis and prediction of PMH data, and the rules and characteristics of PMH and behavioral characteristics of people with mental disorders are analyzed, and various internal relations among psychological test data are mined, thus providing scientific basis for establishing and perfecting early prevention and intervention of mental disorders in colleges and universities. Artificial neural network is a mathematical model of information processing, which is composed of synapses similar to the structure of brain neurons. The fuzzy clustering analysis and data prediction ability of optimized PMH data are obviously improved. Applying BPNN to the fuzzy clustering analysis and prediction of PMH data, analyzing the rules and characteristics of PMH and the behavioral characteristics of patients with mental disorders, can explore various internal relations among psychological test data, and provide scientific basis for establishing early prevention and intervention of mental disorders.
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基于BPNN的精神健康数据模糊聚类分析与预测
PMH(精神病学/心理健康)受许多因素的影响,这些因素之间有许多联系,因此PMH的预测是一个非线性问题。本文将BPNN (Back Propagation Neural Network,反向传播神经网络)应用于PMH数据的模糊聚类分析和预测,分析PMH的规律和特征与精神障碍患者的行为特征,挖掘心理测试数据之间的各种内在联系,为建立和完善高校精神障碍早期预防和干预提供科学依据。人工神经网络是一种信息处理的数学模型,它由类似于大脑神经元结构的突触组成。优化后的PMH数据的模糊聚类分析和数据预测能力明显提高。将BPNN应用于PMH数据的模糊聚类分析和预测,分析PMH的规律和特征与精神障碍患者的行为特征,可以探索心理测试数据之间的各种内在联系,为建立精神障碍的早期预防和干预提供科学依据。
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International Journal of Circuits, Systems and Signal Processing
International Journal of Circuits, Systems and Signal Processing Engineering-Electrical and Electronic Engineering
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